Categories: AI/ML News

New approach uses generative AI to imitate human motion

An international group of researchers has created a new approach to imitating human motion by combining central pattern generators (CPGs) and deep reinforcement learning (DRL). The method not only imitates walking and running motions but also generates movements for frequencies where motion data is absent, enables smooth transition movements from walking to running, and allows for adaptation to environments with unstable surfaces.
AI Generated Robotic Content

Share
Published by
AI Generated Robotic Content

Recent Posts

AVERAGE COMFYUI USER

submitted by /u/james_za666 [link] [comments]

17 hours ago

Optimal Corpus Aware Training for Neural Machine Translation

Corpus Aware Training (CAT) leverages valuable corpus metadata during training by injecting corpus information into…

17 hours ago

Securely launch and scale your agents and tools on Amazon Bedrock AgentCore Runtime

Organizations are increasingly excited about the potential of AI agents, but many find themselves stuck…

17 hours ago

Applications Now Open for $60,000 NVIDIA Graduate Fellowship Awards

Bringing together the world’s brightest minds and the latest accelerated computing technology leads to powerful…

17 hours ago

Google adds limited chat personalization to Gemini, trails Anthropic and OpenAI in memory features

Google updated the Gemini app running of Gemini 2.5 Pro to reference all historical chats…

18 hours ago

OpenAI Designed GPT-5 to Be Safer. It Still Outputs Gay Slurs

The new version of ChatGPT explains why it won’t generate rule-breaking outputs. WIRED’s initial analysis…

18 hours ago